Título: | Self-Supervised Learning for Text Recognition |
Incorpóralo a tu calendario: |
---|---|---|
Tipo: | Comunicación científica | |
Por: | Carlos Peñarrubia Morcillo | |
Lugar: | Sala Frances Allen - Instituto Universitario de Investigación en Informática | |
Día/hora: | 10:00 25/09/2024 | |
Duración aproximada: | 1:30 horas | |
Persona de contacto: | Valero Más, José Javier (jjvalerodlsi.ua.es) | |
Resumen: | Text Recognition (TR) refers to the research area that focuses on retrieving textual information from images, a topic that has seen significant advancements in the last decade due to the use of Deep Neural Networks (DNN). However, these solutions often necessitate vast amounts of manually labeled or synthetic data. Addressing this challenge, Self-Supervised Learning (SSL) has gained attention by utilizing large datasets of unlabeled data to train DNN, thereby generating meaningful and robust representations. Although SSL was initially overlooked in TR because of its unique characteristics, recent years have witnessed a surge in the development of SSL methods specifically for this field. This rapid development, however, has led to many methods being explored independently, without taking previous efforts in methodology or comparison into account, thereby hindering progress in the field of research. In this context, I will present a critical and comprehensive overview of the current state of the art, reviewing and analyzing the existing methods, comparing their results, and highlight inconsistencies in the current literature. This thorough analysis aims to provide general insights into the field, propose standardizations, identify new research directions, and foster its proper development. |
[ Tancar ]